Zhan Ruiyu
Department of Oncology, Zigong Fourth People's Hospital, Zigong, China.
PLoS One. 2025 Jun 25;20(6):e0326874. doi: 10.1371/journal.pone.0326874. eCollection 2025.
Precise forecasting of cancer outcomes is essential for medical professionals to assess the well-being of patients and develop customized therapeutic plans. Despite its importance, achieving precise forecasts remains a formidable challenge. To tackle this issue, we present an innovative method that harmonizes the Grey Wolf Optimizer (GWO) with Levy flight to optimize the weights and biases of a Backpropagation (BP) neural network-a prominent machine learning model extensively employed in classification tasks. Our novel approach, LGWO-BP, is tailored to augment the precision of cancer prognosis predictions. We performed comparative analyses against other methodologies across various functions and public datasets to assess their effectiveness. The experimental results show the exceptional strengths of the proposed LGWO-BP method, particularly its accuracy and reliability compared to GWO-BP, and show that it achieves comparative results against state-of-the-art (SOTA) methods. Our assessment of the LGWO-BP technique's efficacy involved undertaking empirical tests across half a dozen openly accessible datasets. For the early-stage diabetes dataset, LGWO-BP achieved an accuracy of 0.92, a recall of 0.93, a precision of 0.88, an F1-score of 0.91, and an AUC of 0.95. Utilizing the diabetes dataset from 130 U.S. hospitals, the LGWO-BP algorithm achieved a precision rate of 0.97, a sensitivity of 1.00, a correct classification rate of 0.99, a harmonic mean of precision and recall (F1-score) of 0.98, and an area under the ROC curve (AUC) of 1.00. For the diabetes health indicators dataset, LGWO-BP achieved an accuracy of 0.9 and an AUC of 1. Leveraging data from The Cancer Genome Atlas (TCGA) - a U.S.-led initiative conducting in-depth molecular research to elucidate the causative mechanisms of cancer - this study focuses on three specific cancer types within the dataset: lung, breast, and esophageal cancers. TCGA provides a rich repository of genomic, transcriptomic, epigenomic, and patient-specific clinical data across 33 cancer types. In evaluating the prognostic performance of the LGWO-BP (Lévy flight-enhanced Grey Wolf Optimizer integrated with Back Propagation) model, we observed AUC (Area Under the Curve) scores of 0.70 for miRNA expression, 0.72 for gene expression, and 0.72 for DNA methylation. Regarding precision, the model achieved accuracies of 0.67, 0.69, and 0.66 for miRNA expression, gene expression, and DNA methylation, respectively. For recall, the corresponding values were 0.71, 0.61, and 0.62. Notably, the F1-scores, which balance precision and recall, were 0.69 for miRNA expression, 0.65 for gene expression, and 0.62 for DNA methylation. This research not only advances the application of machine learning in medical prognosis but also offers crucial guidance for clinicians in developing more precise and reliable prognostic tools for cancer patients. By enhancing the efficacy of machine learning-driven cancer prognosis, our proposed LGWO-BP approach has the potential to improve patient care and treatment outcomes significantly.
准确预测癌症预后对于医学专业人员评估患者健康状况并制定个性化治疗方案至关重要。尽管其很重要,但实现精确预测仍然是一项艰巨的挑战。为了解决这个问题,我们提出了一种创新方法,将灰狼优化算法(GWO)与莱维飞行相结合,以优化反向传播(BP)神经网络(一种在分类任务中广泛使用的著名机器学习模型)的权重和偏差。我们的新方法LGWO - BP旨在提高癌症预后预测的精度。我们针对各种函数和公共数据集与其他方法进行了比较分析,以评估它们的有效性。实验结果显示了所提出的LGWO - BP方法的卓越优势,特别是与GWO - BP相比,其准确性和可靠性,并表明它与最先进的(SOTA)方法取得了可比的结果。我们对LGWO - BP技术功效的评估涉及在六个可公开获取的数据集上进行实证测试。对于早期糖尿病数据集,LGWO - BP的准确率为0.92,召回率为0.93,精确率为0.88,F1分数为0.91,曲线下面积(AUC)为0.95。利用来自130家美国医院的糖尿病数据集,LGWO - BP算法的精确率为0.